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Research on recommendation and interaction strategies based on resource similarity in the manufacturing ecosystem

机译:基于制造生态系统资源相似性的建议与互动策略研究

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摘要

Nowadays, the thriving of the manufacturing ecosystems (ME) driven by the increasing competition in industrial markets, the ubiquitous implementation of intelligent systems, and the more frequent collaboration among manufacturing enterprises. During the practice of the system upgrade, it is increasingly noted that the redundancy of manufacturing resources and the inefficiency in resource configuration are the major obstacles to achieving satisfying value-creation within ME, which also result in cumbersome decision making (DM) in the problems of requirement-service configuration (RSC) and collaborative production. To address these issues, the research on resource recommendation and interaction is carried out. Firstly, the resource similarity models for autonomous resource filtering brace the whole DM mechanism in RSC and push the most suitable resource to the host automatically. Then, the interaction model provides a self-organized production mode without human intervention. The blindness, lag, and unfairness in the manual communication is eliminated by the Machine to Machine (M2M) interaction and automatic coordination. Besides, an NLP-based machine learning algorithm is introduced for quantifying semantic distance and measuring the differences between orders. Composed by these models, a total solution named Industry-Chat (I-Chat) emerges. With the help of that, production resources can be scheduled and managed autonomously and the order-based production processes could be promoted seamlessly. Thus, an improved industrial ecosystem with automatic DM and self-organization for future intelligent manufacturing is realized. The practicability of the research is verified by a case study. The results show that the production cost is reduced by 12%, the resource utilization rate is improved and its economic value is demonstrated.
机译:如今,由工业市场竞争日益增加,智能系统无处不在的实施以及制造业企业更频繁的合作,推动了制造生态系统(ME)的蓬勃发展。在制度升级的实践中,越来越多地指出,制造资源的冗余和资源配置的低效率是实现令人满意的价值创造的主要障碍,这也导致问题繁琐的决策(DM)要求 - 服务配置(RSC)和协作生产。为解决这些问题,执行资源推荐和互动的研究。首先,自主资源过滤的资源相似性模型支撑RSC中的整个DM机制,并自动将最合适的资源推到主机。然后,交互模型提供自组织的生产模式,没有人为干预。通过机器到机器(M2M)相互作用和自动协调,将手动通信中的失明,滞后和不公平进行。此外,引入了基于NLP的机器学习算法,用于量化语义距离并测量订单之间的差异。由这些模型组成,一个名为Industy-Chat(I-Chat)的总解决方案出现了。在此处,可以自主计划和管理生产资源,并且可以无缝地促进基于订单的生产流程。因此,实现了具有自动DM和未来智能制造的自动DM和自组织的改进的工业生态系统。案例研究验证了该研究的实用性。结果表明,生产成本降低了12%,资源利用率得到改善,其经济价值得到了证明。

著录项

  • 来源
    《Advanced engineering informatics》 |2020年第10期|101183.1-101183.16|共16页
  • 作者单位

    School of Mechanical Engineering Northwestern Polytechnical University Xi'an 710072 PR China;

    School of Mechanical Engineering Northwestern Polytechnical University Xi'an 710072 PR China School of Mechanical Engineering Shaanxi University of Technology Shaanxi 723001 PR China;

    School of Mechanical Engineering Northwestern Polytechnical University Xi'an 710072 PR China;

    School of Mechanical Engineering Northwestern Polytechnical University Xi'an 710072 PR China;

    School of Mechanical and Aerospace Engineering Nanyang Technological University Singapore Delta-NTU Corporate Laboratory for Cyber-Physical System School of Electrical and Electronic Engineering Nanyang Technological University Singapore;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Recommendation system; Resource interaction; Manufacturing ecosystem; Resource similarity;

    机译:推荐系统;资源互动;制造生态系统;资源相似性;

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